Design and Implementation of Collaborative Cloud-Edge System Using
Raspberry Pi for Video Surveillance System with AIoT to Analyse
Effective Performance Parameters of Network.
Author(s)
Dr. Trupti Kaushiram Wable
Abstract
The video surveillance can avoid many crimes as well
as it will help to reduce crime rate in society as well we can save
many lives. But currently implemented IoT system having
various limitations like insufficient storage capacity and
inadequate processing of information. Thus we can integrate
traditional IoT system with Artificial Intelligence (AI) models to
improve storage capacity & processing called as Artificial
Intelligence of Things (AIoT). This system mainly focuses on
performance parameter of video surveillance system the
parameter consist of Response Latency Time, Network
Bandwidth & Storage on server. In proposed system divided in
two part, First part include Edge node implemented with
Raspberry Pi as IoT system which having video input then it
perform image processing & store output on edge node, second
part include cloud node which is train with AI model as AI
system to extract image and analyzed performance of system. So
Cloud-Edge Collaborative system refers as Artificial Intelligence
of Things (AIoT). In this research I conclude comparative study
of traditional Cloud Computing System with Collaborative
Cloud-Edge Computing system which shows that, the Response
Latency Time improve by 5 times, Network Bandwidth improve
by 10 times and storage capacity improve by 5 times of traditional
Edge Computing System.